Background id='Par1' class='Para'>More than 1.2 million scorpion stings occur annually worldwide, particularly in tropical regions. In the absence of proper medical care, mortali'/> Predictive determinants of scorpion stings in a tropical zone of south Iran: use of mixed seasonal autoregressive moving average model
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Predictive determinants of scorpion stings in a tropical zone of south Iran: use of mixed seasonal autoregressive moving average model

机译:伊朗南部热带地区蝎st的预测性决定因素:混合季节自回归移动平均模型的使用

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class="Heading">Background id="Par1" class="Para">More than 1.2 million scorpion stings occur annually worldwide, particularly in tropical regions. In the absence of proper medical care, mortality due to venomous scorpion stings is an important public health issue. The aim of the present study is to explore the temporal trend of scorpionism with time series models and determine the effective factors on this event using regression models. class="Heading">Methods id="Par2" class="Para">A retrospective cross sectional study was conducted on 853 scorpion stung patients. They were referred to Haji-Abad Hospital of Hormozgan University of Medical Sciences (HUMS), south Iran, from May 2012 to July 2016. A linear model to describe and predict the monthly trend of scorpion sting cases is fit with autoregressive moving average (ARMA) model. class="Heading">Results id="Par3" class="Para">Of 853 victims, 384 (45%) patients were female and 30.2% of them lived in urban areas. The mean (?± SD) age of patients was 30.1 (?± 19.6) years and the most affected age group was 20-29??years (21.8%). Most victims were unemployed people and farmers (54.7%) followed by housewives (30.2%). The majority of the stings occurred indoors (53.7%), between midnight and 6??a.m. (29.2%), in the summer (44.2%), and the most affected limbs were hands and legs (81.2%). Patient genders and occasions of being stung by scorpions were significantly different between outdoors and indoors (p????0.001). Scorpion stings due to Odontobuthus doriae were significantly higher than due to other species in urban and rural patients (p??=??0.04). Mixed seasonal ARMA at lag 12, ARMA (1, 1)???—??(0, 1), was selected as the best process for monthly trend of data. Regression results indicated that significant climate factors associated with scorpion stings are temperature (p????0.001) and relative humidity (p??=??0.002). class="Heading">Conclusions id="Par4" class="Para">Scorpion stings have a noticeable effect on tropical rural populations, mainly farmers. Two effective climate factors associated positively and negatively with scorpion sting cases are temperature and relative humidity, respectively. The results of time series and regression models to predict the trends and determinants of scorpion stings are almost the same.
机译:class =“ Heading”>背景 id =“ Par1” class =“ Para”>全世界每年有120万以上的蝎子ing伤,特别是在热带地区。在缺乏适当的医疗保健的情况下,毒蛇蝎引起的死亡率是重要的公共卫生问题。本研究的目的是使用时间序列模型探索蝎子的时间趋势,并使用回归模型确定该事件的有效因素。 class =“ Heading”>方法 id =“ Par2” class =“ Para”>回顾性横断面研究针对853名s疮患者进行。他们于2012年5月至2016年7月被送往伊朗南部霍尔莫兹甘医科大学(HUMS)的哈吉·阿巴德医院(Haji-Abad Hospital)。用于描述和预测蝎st病例每月趋势的线性模型与自回归移动平均值(ARMA)拟合)模型。 class =“ Heading”>结果 id =“ Par3” class =“ Para”>在853名受害者中,有384名(45%)患者是女性,其中30.2%住在市区。患者的平均年龄(±SD)为30.1岁(±±19.6)岁,受影响最大的年龄组为20-29岁(21.8%)。大多数受害者是失业者和农民(54.7%),其次是家庭主妇(30.2%)。大部分刺痛发生在室内(53.7%),在午夜至凌晨6点之间。 (29.2%),夏季(44.2%),受影响最大的四肢是手和腿(81.2%)。在室外和室内,患者的性别和被蝎子st伤的机会明显不同( p ?? Odontobuthus doriae 引起的蝎毒明显高于其他物种( p ?? = ?? 0.04)。滞后12时的混合季节性ARMA被选择为月度数据趋势的最佳处理,即ARMA(1,1)???(0,1)。回归结果表明,与蝎st有关的重要气候因素是温度( p ?? <0.001)和相对湿度( p ?? = ?? 0.002)。 class =“ Heading”>结论 id =“ Par4” class =“ Para”>蝎st对热带农村人口有明显影响,主要是农民。与蝎ing发病有关的两个有效的气候因素分别是温度和相对湿度。用时间序列和回归模型预测蝎子ing的趋势和决定因素的结果几乎相同。

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